This paper principally discusses the training problem of Gaussian basis function classifier which can be used for classification. For basis function classifier
how to correctly initialize the number of network hidden nodes and their parameters is very important. Genetic-based Gaussian function clustering method and fuzzy decision technique are explored to complete this work. Then by using back propagation learning algorithm
the final training can be achieved. Results from the typical experiments are used to illustrate the power and efficiency of this method.